This paper considers the use of Order Statistics (OS) in the theory of Pattern Recognition (PR). The pioneering work on using OS for classification was presented in [1] for the Uniform distribution, where it was shown that optimal PR can be achieved in a counter-intuitive manner, diametrically opposed to the Bayesian paradigm, i.e., by comparing the testing sample to a few samples distant from the mean - which is distinct from the optimal Bayesian paradigm. In [2], we showed that the results could be extended for a few symmetric distributions within the exponential family. In this paper, we attempt to extend these results significantly by considering asymmetric distributions within the exponential family, for some of which even the closed f...
AbstractIn this paper, two sample Bayesian prediction intervals for order statistics (OS) are obtain...
Abstract. In this article, a new censoring scheme is considered, namely, a middle part of a random s...
AbstractThis paper deals with the problem of classifying a multivariate observation X into one of tw...
This paper considers the use of Order Statistics (OS) in the theory of Pattern Recognition (PR). The...
Published version of a Chapter in the book: Computer Analysis of Images and Patterns. Also available...
Although the field of parametric Pattern Recognition (PR) has been thoroughly studied for over five ...
Author's version of an article in the journal: Pattern Recognition. Also available from the publishe...
Published version of a chapter in the book: Image Analysis and Recognition. Also available from the ...
The gold standard for a classifier is the condition of optimality attained by the Bayesian classifie...
Published version of a chapter in the book: Progress in Pattern Recognition, Image Analysis, Compute...
Author's version of an article in the journal: Pattern Recognition. Also available from the publishe...
The gold standard for a classifier is the condition of optimality attained by the Bayesian classifie...
Traditionally, in the field of Pattern Recognition (PR), the moments of the class-conditional densit...
This paper proposes a novel classification paradigm in which the properties of the Order Statistics ...
The theory of classification and discrimination has gained major attention in the scientific literat...
AbstractIn this paper, two sample Bayesian prediction intervals for order statistics (OS) are obtain...
Abstract. In this article, a new censoring scheme is considered, namely, a middle part of a random s...
AbstractThis paper deals with the problem of classifying a multivariate observation X into one of tw...
This paper considers the use of Order Statistics (OS) in the theory of Pattern Recognition (PR). The...
Published version of a Chapter in the book: Computer Analysis of Images and Patterns. Also available...
Although the field of parametric Pattern Recognition (PR) has been thoroughly studied for over five ...
Author's version of an article in the journal: Pattern Recognition. Also available from the publishe...
Published version of a chapter in the book: Image Analysis and Recognition. Also available from the ...
The gold standard for a classifier is the condition of optimality attained by the Bayesian classifie...
Published version of a chapter in the book: Progress in Pattern Recognition, Image Analysis, Compute...
Author's version of an article in the journal: Pattern Recognition. Also available from the publishe...
The gold standard for a classifier is the condition of optimality attained by the Bayesian classifie...
Traditionally, in the field of Pattern Recognition (PR), the moments of the class-conditional densit...
This paper proposes a novel classification paradigm in which the properties of the Order Statistics ...
The theory of classification and discrimination has gained major attention in the scientific literat...
AbstractIn this paper, two sample Bayesian prediction intervals for order statistics (OS) are obtain...
Abstract. In this article, a new censoring scheme is considered, namely, a middle part of a random s...
AbstractThis paper deals with the problem of classifying a multivariate observation X into one of tw...